Department of Brain and Cognitive Engineering, Korea University, 145 Anam-ro, Seongbuk-gu, Seoul, 02841, Korea.
Department of Computer Science, Nazarbayev University, Qabanbay Batyr Ave 53, Astana 010000, Kazakhstan.
Gigascience. 2019 May 1;8(5). doi: 10.1093/gigascience/giz002.
Electroencephalography (EEG)-based brain-computer interface (BCI) systems are mainly divided into three major paradigms: motor imagery (MI), event-related potential (ERP), and steady-state visually evoked potential (SSVEP). Here, we present a BCI dataset that includes the three major BCI paradigms with a large number of subjects over multiple sessions. In addition, information about the psychological and physiological conditions of BCI users was obtained using a questionnaire, and task-unrelated parameters such as resting state, artifacts, and electromyography of both arms were also recorded. We evaluated the decoding accuracies for the individual paradigms and determined performance variations across both subjects and sessions. Furthermore, we looked for more general, severe cases of BCI illiteracy than have been previously reported in the literature.
Average decoding accuracies across all subjects and sessions were 71.1% (± 0.15), 96.7% (± 0.05), and 95.1% (± 0.09), and rates of BCI illiteracy were 53.7%, 11.1%, and 10.2% for MI, ERP, and SSVEP, respectively. Compared to the ERP and SSVEP paradigms, the MI paradigm exhibited large performance variations between both subjects and sessions. Furthermore, we found that 27.8% (15 out of 54) of users were universally BCI literate, i.e., they were able to proficiently perform all three paradigms. Interestingly, we found no universally illiterate BCI user, i.e., all participants were able to control at least one type of BCI system.
Our EEG dataset can be utilized for a wide range of BCI-related research questions. All methods for the data analysis in this study are supported with fully open-source scripts that can aid in every step of BCI technology. Furthermore, our results support previous but disjointed findings on the phenomenon of BCI illiteracy.
基于脑电图(EEG)的脑机接口(BCI)系统主要分为三大范式:运动想象(MI)、事件相关电位(ERP)和稳态视觉诱发电位(SSVEP)。在这里,我们呈现了一个包含大量受试者在多个时段的三大 BCI 范式的 BCI 数据集。此外,通过问卷获得了有关 BCI 用户心理和生理状况的信息,并且还记录了任务无关的参数,例如双臂的静息状态、伪影和肌电图。我们评估了各个范式的解码准确性,并确定了跨受试者和时段的性能变化。此外,我们寻找了比文献中以前报道的更普遍、更严重的 BCI 文盲情况。
所有受试者和时段的平均解码准确率分别为 71.1%(±0.15)、96.7%(±0.05)和 95.1%(±0.09),MI、ERP 和 SSVEP 的 BCI 文盲率分别为 53.7%、11.1%和 10.2%。与 ERP 和 SSVEP 范式相比,MI 范式在受试者和时段之间表现出较大的性能变化。此外,我们发现 27.8%(54 人中的 15 人)的用户是普遍的 BCI 读写者,即他们能够熟练地执行所有三种范式。有趣的是,我们没有发现普遍的 BCI 文盲用户,即所有参与者都能够控制至少一种类型的 BCI 系统。
我们的 EEG 数据集可用于广泛的 BCI 相关研究问题。本研究中所有数据分析方法都得到了完全开源脚本的支持,这些脚本可以帮助完成 BCI 技术的每一步。此外,我们的结果支持了以前但不相关的 BCI 文盲现象的发现。